Title
Active learning from uncertain crowd annotations
Abstract
Supervised learning means there is a teacher providing labels given data samples, and the goal is to predict the labels of unseen instances. In general, these labelers may make mistakes. Typical learning methods rely on an often overlooked assumption that a single expert can provide the required supervision; however, it is becoming more common for supervision to be available in many forms as data can be shared and processed by increasingly larger audiences. This makes it possible for not just one but many labelers to offer some forms of supervision (this phenomena is coined as crowdsourcing). Some annotators may be more reliable than others, malicious, or may be correlated with others. Annotator effectiveness may vary depending on the data instance presented. We utilize a probabilistic model for learning a classifier from multiple annotators, where the reliability of the annotators may vary with the annotator and the data that they observe. Although we may have access to many annotators, it is still expensive to label and not all annotators have the same level of expertise. The general problem of intelligently choosing instances for labeling is known as active learning. The crowdsourcing paradigm posits new challenges to active learning - not only are we interested in which sample to label next but also which annotator should be queried to benefit our learning model the most. This paper presents different approaches for performing active learning in the crowdsourcing setting.
Year
DOI
Venue
2014
10.1109/ALLERTON.2014.7028481
Allerton
Keywords
Field
DocType
graph theory,learning (artificial intelligence),outsourcing,pattern classification,probability,active learning,crowd annotation,crowdsourcing,data classifier,graphical model,probabilistic model,adversarial annotators,classification,crowd sourcing,graphical models,multiple annotation
Active learning,Crowdsourcing,Computer science,Supervised learning,Statistical model,Artificial intelligence,Graphical model,Classifier (linguistics),Machine learning
Conference
ISSN
Citations 
PageRank 
2474-0195
2
0.37
References 
Authors
14
4
Name
Order
Citations
PageRank
Yan Yan169131.13
Rosales, R.220.37
Fung, G.320.37
Jennifer G. Dy41567126.18